Part I
Transformation
Chapter 1
Transformation of Customer Insights
Martin Einhorn1 and Michael Löffler2
Abstract
Digitalization is changing the assets, competencies, and value creation of the customer insight function. New data sources, methods, and technologies provide an unprecedented wealth of data and opportunity for efficiency. At the same time, it is leading to an evolution in necessary capabilities such as data synthesis, networking, and constant learning. Changes in the means of value creation have included automation of insights, more frequent evaluation of business results, and more emotional inspiration. Customer insights in the machine age drive customer centricity and go beyond the descriptive research function of previous “market research” within companies.
Keywords: Customer insights; market research; customer centricity; dynamic capabilities; data synthesis; customer insights automation
Customer Centricity as a Driver for the Growing Importance of Customer Insights
Digitalization is transforming customer insights as an industry and as a function within companies. This transformation is more than just the change from paper and pencil questionnaires to handheld devices or from time-consuming factor analysis on slow mainframe computers to the instant calculation on laptops. The transformation into the machine age of customer insight is changing assets, competencies, and the means of value creation. The following contribution shows the transformation of customer insights through the example of another industry in digital transformation: the car industry. The case of Porsche customer insights illustrates the opportunities and challenges of this development perfectly, because the company has been known for customer centric products and services for many years.
Customer centricity is a key factor for success in saturated markets, service, and consumer goods industries (Morgan/Vorhies, 2018). Customer insights are considered a key driver for the development of customer centricity. The scientific findings coincide with Porsche's internal experience, which shows that customer information is the starting point for customer centricity. Growing customer centricity as part of corporate culture in turn leads to a growing and changing need for customer information in order to increase responsiveness (Hult, Ketchen, & Slater, 2005) and innovative strength (Mahmoud, Blankson, Owusu-Frimpong, Nwankwo, & Trang, 2016). The customer centricity of sustainably successful companies will further increase the overall demand for customer insights, even if this is not followed by proportionally higher budgets.
A further driver in the demand for customer insights is the changing organization of work. This has been prompted by design thinking methods (Brown & Martin, 2015; Plattner et al., 2014) and user and use-oriented development processes for digital products (Brenner et al., 2014) that require even more frequent information about customer needs. The regular sharing of experiences and the topics of discussion at formal and informal meetings of international market research leaders confirm the core trend of growing demand for customer insights with nonproportional growth of resources.
An opportunity and also the fuel for a growing range of customer insights lies in the rapidly growing amount of available customer and behavioral data. The growth rate (CAGR) of global IP traffic is an indicator of the quantitative growth of data. Cisco (2019) puts it at 26% p.a. [?] from 2017 to 2022. According to this, IP traffic worldwide will increase from 120 ExaBytes to 396 ExaBytes per month. This forecast takes into account the increasing number of Internet-enabled devices in households, which will rise from a global average of 2.4 per household in 2017 to 3.6 by 2022. The highest equipment ratio is already 8.0 in North America and will continue to rise to 13.4 devices. To make it more tangible: 94%–98% of the population in many European and North American countries have a smartphone or a mobile phone. Among young people, it is even more (Pewresearch, 2019). Google receives 3.5 billion search queries per day (internetlivestats); this is about one query for every second person; 3.2 billion users use at least one Facebook service per month (Allfacebook.de, 2020). In 2019 alone, 305 million wearables were sold worldwide (Statista, 2020). For the readers of this book it will be harder to find someone in their circle of acquaintances who does not have a smartphone, has not searched on Google in the last month, and does not have any other smart device than someone who participated in a phone survey last month.
The growing amount and diversity of digital data as a resource is leading to far-reaching changes in the fundamental function and processes of customer insights departments in companies and providers in the marketplace, which previously saw themselves as the “producers” of “customer information” resources. This growth in data volume and diversity, coupled with the growth in the number of data-generating devices, justifies the term “machine age” for customer insights.
The changes in the customer insight industry are reflected in the new players along the entire value chain, from data generation, processing, and analysis to visualization. This can be seen in new technologies and customer insight consulting methods (GRIT Report, 2019, p. 64) but also in the complete transformation of individual value chains through automation and data privacy requirements (see Jakobi et al., Chapter 11).
The Transformation from Market Research to Customer Insights
Standard works on market research often portray the market research process as essentially complete after data collection and evaluation (e.g., Esch, Herrmann, & Sattler, 2013, p. 91; Koch, Riedmüller, & Gebhardt, 2016, p. 11). The ESOMAR definition from 2009 also understands market research as
… the systematic gathering and interpretation of information about individuals or organizations using the statistical and analytical methods and techniques of the applied social sciences to gain insight or support decision making. The identity of respondents will not be revealed to the user of the information without explicit consent and no sales approach will be made to them as a direct result of their having provided information.
In the 5th edition of their standard work in 2017, Malhotra, Birks, and Nunan (2017, p. 7) already placed more emphasis on the function of market research as a link between customers and decision-makers than on data acquisition. According to them, market research
... is the function that links the consumer, customer, and the public to the marketer through information – information is used to identify and define marketing opportunities and problems; generate, refine, and evaluate marketing actions; monitor marketing performance; and improve understanding of marketing as a process. Marketing research specifies the information required to address these issues, designs the method … and communicates the findings and their implications. (Malhotra et al. 2017, p. 7)
In practice, however, former market research departments are increasingly expected to provide decision support – right up to helping to shape business strategies (e.g., Young & Javalgi, 2007, p. 116). This also includes the adequate communication of results. Pure reporting has long since been replaced by “telling the research story” specific to the target and addressee (Smith & Fletcher, 2004, p. 1). In some cases, the role of market research even includes the implementation of market research results and translation into action plans (e.g., Xu, 2005, p. 21). The market researcher is tasked with and expected to be able to “spot how research can solve a problem and help a firm make better decisions” (Proctor, 2005, p. 28). This shows that the transformation of the customer research function started several years ago.
The new understanding goes beyond the understanding of “research” as an information provider. It focuses on the generation of “insights.” Insights include their own value creation and also require meta-knowledge of the suitability of data sources, tools, and process alternatives based on rapidly changing assets such as data sources and tools. The frequently named “customer” insights department usually includes potential customers and thus eliminates the need to discuss “customer” or “consumer.”
Dynamic Capabilities as Necessity and Opportunity
The rapidly changing assets and competencies in the customer insights machine age require dynamic capabilities in order to generate value for companies. Teece, Pisano, and Shuen (1997, p. 516) define dynamic capabilities as the ability of companies and parts of companies to combine and adapt competencies (“ability to build, integrate, and reconfigure internal and external competencies to address rapidly changing environments”). In doing so, they pay particular attention to assets such as technologies and processes (Teece et al., 1997, p. 519). In a comprehensive review of numerous publications, Eloranta and Turunen (2015, p. 397) highlight the role of technologies, tools, learning processes, and internal service networks in promoting dynamic capabilities. Eloranta and Turunen's research also shows that dynamic capabilities are particularly necessary in the transition from product-driven to service-infused organizations (p. 412) and that a network-like organization of resources and technologies supports dynamic capabilities.
The GreenBook Research Industry Trends Report (GRIT Report) surveys the topics and focal points of the customer insight industry among customers and providers on a quarterly basis. It was significantly altered in 2019 and renamed GRIT Business & Innovation Report with the goal of generating more value and impact (p. 3). In terms of content, the GRIT Business & Innovation Report, 2019; see Fig. 1.1 clearly shows which competencies and assets are currently most important in the industry: AI, automation, machine learning, and big data analytics. On the buyer side, methods, data integration, real-time reporting, and storytelling are just as important as automation.
Fig. 1.1. Customer Insight Industry Opportunities and Challenges.
Source: GRIT Business & Innovation Report (2019, p. 13).
This shows a stabilization of the trends that were already apparent in the GRIT Report (2018). Big data, diverse data sources, tools for automated data processing, and AI are among the game changers for almost all respondents in the industry with the clear goal of identifying value contributions through storytelling (see Fig. 1.2).
Fig. 1.2. Top 5 Gamechangers.
Source: GRIT Report (2018, p. 46).
It sums up the question of the GRIT Report, “If you could add one individual with a needed skill in your organization, what skill would it be?” The top three are at the heart of this entire book: data analytics & data science, storytelling & visualization, and business knowledge (see Fig. 1.3).
Fig. 1.3. Single Most Important Competency for Customer Insights in the Machine Age.
Source: GRIT Report (2018, p. 103).
Transformation of the Automotive Industry – The Porsche Case
In almost all industrial sectors and regions of the world, the service and industrial sectors are facing considerable upheavals. A prime example is the automotive industry, where technological change, for example, in the field of electromobility, is leading to intensive and disruptive challenges. Other factors are the emergence of new competitors, for example, in China, as well as new business models with market participants such as Uber (see, e.g., Athanasopouloua, de Reuvera, Nikoub, & Bouwmana, 2009; Gao, Kaas, Mohr, & Wee, 2016). The transformation process in the automotive industry is driven by emission reduction, restructuring of value chains, modularization, the growing importance of digital control units, and e-mobility (Kodama, 2019, p. 3). The transformation will continue and intensify through a “fusion of technologies that is blurring the lines be...